DSPy for Agentic AI Applications: Build Modular, Self-Optimizing AI Agents with Python’s Leading Declarative LLM Framework
What if you could design AI agents that think, act, and improve—without brittle prompt hacks or unscalable scripts? Today’s AI landscape demands systems that are modular, explainable, and easy to adapt. DSPy delivers exactly that: a declarative, Python-first framework for building agentic applications that are both powerful and maintainable.
This book is your hands-on guide to mastering DSPy—taking you from installation to production-ready, self-optimizing AI agents. You’ll learn how to express LLM logic as typed, testable modules, integrate them with retrieval systems and tools, and use DSPy’s optimizers to improve accuracy, latency, and reliability based on real data. With DSPy, switching between OpenAI, Anthropic, Gemini, or local models is as simple as changing a single configuration line—no rewrites required.
Inside, you’ll gain the skills to:
Structure agent logic with signatures and modules for clarity and reusability.
Track, debug, and visualize your pipelines with MLflow tracing.
Optimize prompts and demonstrations using data-driven search—not guesswork.
Build Retrieval-Augmented Generation (RAG) pipelines for grounded, factual answers.
Construct ReAct agents that combine reasoning and action in multi-step workflows.
Implement multi-agent protocols and master–worker coordination with MCP/A2A frameworks.
Deploy and scale your agents across cloud platforms while controlling cost and ensuring privacy.
Every chapter is packed with runnable examples, production tips, and optimization strategies—showing you not just how to build with DSPy, but how to do it in a way that scales with your needs. Whether you’re a data scientist automating research, a backend engineer designing AI-powered APIs, or an AI developer building specialized assistants, this guide equips you with the tools and patterns that work in the real world.
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Paperback. Etat : new. Paperback. DSPy for Agentic AI Applications: Build Modular, Self-Optimizing AI Agents with Python's Leading Declarative LLM FrameworkWhat if you could design AI agents that think, act, and improve-without brittle prompt hacks or unscalable scripts? Today's AI landscape demands systems that are modular, explainable, and easy to adapt. DSPy delivers exactly that: a declarative, Python-first framework for building agentic applications that are both powerful and maintainable.This book is your hands-on guide to mastering DSPy-taking you from installation to production-ready, self-optimizing AI agents. You'll learn how to express LLM logic as typed, testable modules, integrate them with retrieval systems and tools, and use DSPy's optimizers to improve accuracy, latency, and reliability based on real data. With DSPy, switching between OpenAI, Anthropic, Gemini, or local models is as simple as changing a single configuration line-no rewrites required.Inside, you'll gain the skills to: Structure agent logic with signatures and modules for clarity and reusability.Track, debug, and visualize your pipelines with MLflow tracing.Optimize prompts and demonstrations using data-driven search-not guesswork.Build Retrieval-Augmented Generation (RAG) pipelines for grounded, factual answers.Construct ReAct agents that combine reasoning and action in multi-step workflows.Implement multi-agent protocols and master-worker coordination with MCP/A2A frameworks.Deploy and scale your agents across cloud platforms while controlling cost and ensuring privacy.Every chapter is packed with runnable examples, production tips, and optimization strategies-showing you not just how to build with DSPy, but how to do it in a way that scales with your needs. Whether you're a data scientist automating research, a backend engineer designing AI-powered APIs, or an AI developer building specialized assistants, this guide equips you with the tools and patterns that work in the real world. This item is printed on demand. Shipping may be from multiple locations in the US or from the UK, depending on stock availability. N° de réf. du vendeur 9798297874886
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Paperback. Etat : new. Paperback. DSPy for Agentic AI Applications: Build Modular, Self-Optimizing AI Agents with Python's Leading Declarative LLM FrameworkWhat if you could design AI agents that think, act, and improve-without brittle prompt hacks or unscalable scripts? Today's AI landscape demands systems that are modular, explainable, and easy to adapt. DSPy delivers exactly that: a declarative, Python-first framework for building agentic applications that are both powerful and maintainable.This book is your hands-on guide to mastering DSPy-taking you from installation to production-ready, self-optimizing AI agents. You'll learn how to express LLM logic as typed, testable modules, integrate them with retrieval systems and tools, and use DSPy's optimizers to improve accuracy, latency, and reliability based on real data. With DSPy, switching between OpenAI, Anthropic, Gemini, or local models is as simple as changing a single configuration line-no rewrites required.Inside, you'll gain the skills to: Structure agent logic with signatures and modules for clarity and reusability.Track, debug, and visualize your pipelines with MLflow tracing.Optimize prompts and demonstrations using data-driven search-not guesswork.Build Retrieval-Augmented Generation (RAG) pipelines for grounded, factual answers.Construct ReAct agents that combine reasoning and action in multi-step workflows.Implement multi-agent protocols and master-worker coordination with MCP/A2A frameworks.Deploy and scale your agents across cloud platforms while controlling cost and ensuring privacy.Every chapter is packed with runnable examples, production tips, and optimization strategies-showing you not just how to build with DSPy, but how to do it in a way that scales with your needs. Whether you're a data scientist automating research, a backend engineer designing AI-powered APIs, or an AI developer building specialized assistants, this guide equips you with the tools and patterns that work in the real world. This item is printed on demand. Shipping may be from our UK warehouse or from our Australian or US warehouses, depending on stock availability. N° de réf. du vendeur 9798297874886
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